Browse > Article
http://dx.doi.org/10.1633/JISTaP.2014.2.2.3

Mobile User Behavior Pattern Analysis by Associated Tree in Web Service Environment  

Mohbey, Krishna K. (Maulana Azad National Institute of Technology Bhopal)
Thakur, G.S. (Maulana Azad National Institute of Technology Bhopal)
Publication Information
Journal of Information Science Theory and Practice / v.2, no.2, 2014 , pp. 33-47 More about this Journal
Abstract
Mobile devices are the most important equipment for accessing various kinds of services. These services are accessed using wireless signals, the same used for mobile calls. Today mobile services provide a fast and excellent way to access all kinds of information via mobile phones. Mobile service providers are interested to know the access behavior pattern of the users from different locations at different timings. In this paper, we have introduced an associated tree for analyzing user behavior patterns while moving from one location to another. We have used four different parameters, namely user, location, dwell time, and services. These parameters provide stronger frequent accessing patterns by matching joins. These generated patterns are valuable for improving web services, recommending new services, and predicting useful services for individuals or groups of users. In addition, an experimental evaluation has been conducted on simulated data. Finally, performance of the proposed approach has been measured in terms of efficiency and scalability. The proposed approach produces excellent results.
Keywords
Mobile User; Mobile Location; Mobile Service; Mobile Pattern; Associated Tree;
Citations & Related Records
연도 인용수 순위
  • Reference
1 Peng, W. C. & Chen, M. S. (2005). Shared data allocation in a mobile computing system: Exploring local and global optimization. IEEE Trans. Parallel Distributed System, 16(4), 374-384.   DOI   ScienceOn
2 Yavas, G., Katsaros, D., Ulusoy, O., & Manolopoulos, Y. (2005). A data mining approach for location prediction in mobile environments. Data Knowl. Eng., 54(2), 121-146.   DOI   ScienceOn
3 Liu, H. & Keselj, V. (2007). Combined mining of web serve logs and web contents for classifying user navigation patterns and predicting users future requests. Data Knowl. Eng., 61(2), 304-330.   DOI   ScienceOn
4 Mohbey, K. K.& Thakur, G. S. (2013). User movement behavior analysis in mobile service environment. British Journal of Mathematics & Computer Science, 3(4), 822-834.   DOI
5 Monnot, J. & Toulouse, S. (2007). The path partition problem and related problems in bipartite graphs. Oper. Res. Lett., 35(5), 677-684.   DOI   ScienceOn
6 Pabarskaite, Z. & Raudys, A. (2007). A process of knowledge discovery from web log data: Systematization and critical review. J. Intell. Inf. Syst., 28(1), 79-104.   DOI
7 Peng, W. C. & Chen, M. S. (2003). Developing data allocation schemes by incremental mining of user moving patterns in a mobile computing system. IEEE Trans. Knowl. Data Eng., 15(1), 70-85.   DOI   ScienceOn
8 Terziyan, V. & Vitko, O. (2003). Bayesian metanetworks for modelling user preferences in mobile environment. In KI 2003: Advances in artificial intelligence. Berlin, Germany: Springer-Verlag, 370-384.
9 Lee, S-C., Paik, J., Ok, J., Song, I., & Kim, U-M. (2007). Efficient mining of user behaviors by temporal mobile access patterns. Int. J. Comput. Sci. Security, 7(2), 285-291.
10 Lee, W-P. (2007). Deploying personalized mobile services in an agent based environment. Expert Syst. Appl., 32(4), 1194-1207.   DOI   ScienceOn
11 Tsai, H. W., Chu, C. P., & Chen, T. S. (2007). Mobile object tracking in wireless sensor networks. Comput. Commun., 30(8), 1811-1825.   DOI   ScienceOn
12 Tseng, V. S., Lu, R. H. C., & Huang, C. H. (2007). Mining temporal mobile sequential patterns in location-based service environments. In Proceedings of the 13th ICPADS, Hsinchu, Taiwan, 1, 1-8.
13 Tseng, V. S. & Lu, E. H. C. (2009). Energy-efficient real-time object tracking in multi-level sensor networks by mining and predicting movement patterns. Journal of System & Software, 82(4), 697-706.   DOI   ScienceOn
14 Agrawal, R. & Srikant, R. (1994). Fast algorithms for mining association rules in large databases. In Proceedings of the 20th International Conference of Very Large Databases, 487-499.
15 Chen, T. S., Chou, Y. S. & Chen, T. C. (2012). Mining user movement behavior patterns in a mobile service environment. IEEE Transactions on system, man, and Cybernetics Part-A Syst. Humans, 42(1), 87-101.   DOI   ScienceOn
16 Cheng, H., Yan, X. & Han, J. (2004). IncSpan: Incremental mining of sequential patterns in a large database. In Proceedings of the 10th ACM SIGKDD Int. Conf. Knowl. Discovery Data Mining, Seattle, WA, 527-532.
17 Fayyazi, M., Kaeli, D. & Meleis, W. (2004). Parallel maximum weight bipartite matching algorithms for scheduling in input-queued switches. In Proceedings of the 18th IPDPS, Santa Fe, NM, 4-11.
18 Gao,H., Tang, J., Hu, X. & Liu, H. (2013). Modeling temporal effects of human mobile behavior on location-based social networks. The 22nd ACM International Conference on Information and Knowledge Management CIKM 2013, San Francisco, USA.
19 Huang, Y. F. & Lin, K.H. (2008). Global data allocation based on user behaviors in mobile computing environments. Comput. Commun., 31(10), 2420-2427.   DOI   ScienceOn
20 Huang, J. L., Chen, M. S. & Peng, W.C. (2003). Exploring group mobility for replica data allocation in a mobile environment. In Proceedings of the ACM Int. Conf. Inf. Knowl. Manage., New Orleans, LA, 161-168.
21 Ilyas, I. F., Aref, W. G., & Elmagarmid, A. K.(2004). Supporting top-k join queries in relational databases. J. Very Large Databases, 13(3), 207-221.
22 Kiukkonen, N., Blom, J., Dousse, O. & Laurila, J. K. (2010). Towards rich mobile phone datasets: Lausanne data collection campaign. ICPS 2010: The 7th International Conference on Pervasive Services, Berlin.
23 Lancieri, L. & Durand, N. (2006). Internet user behavior: Compared study of the access traces and application to the discovery of communities. IEEE Trans. Syst., Man, Cybern. A, Syst., Humans, 36(1), 208-219.   DOI   ScienceOn
24 Perez, I. J., Cabrerizo, F. J., & Viedma, E. H. (2010). A mobile decision support system for dynamic group decision making problem. IEEE Trans. system, management cybernetics, A, System Humans, 40(6), 1244-1256.   DOI   ScienceOn